[Submitted on 19 May 2024 (
), last revised 13 Apr 2026 (this version, v2)]
Title:Language Reconstruction with Brain Predictive Coding from fMRI Data
View a PDF of the paper titled Language Reconstruction with Brain Predictive Coding from fMRI Data, by Congchi Yin and 2 other authors
Abstract:Many recent studies have shown that the perception of speech can be decoded from brain signals and subsequently reconstructed as continuous language. However, there is a lack of neurological basis for how the semantic information embedded within brain signals can be used more effectively to guide language reconstruction. Predictive coding theory suggests the human brain naturally engages in continuously predicting future words that span multiple timescales. This implies that the decoding of brain signals could potentially be associated with a predictable future. To explore the predictive coding theory within the context of language reconstruction, this paper proposes \textsc{PredFT}\~(\textbf{F}MRI-to-\textbf{T}ext decoding with \textbf{Pred}ictive coding). \textsc{PredFT} consists of a main network and a side network. The side network obtains brain predictive representation from related regions of interest\~(ROIs) with a self-attention module. The representation is then fused into the main network for continuous language decoding. Experiments on two naturalistic language comprehension fMRI datasets show that \textsc{PredFT} outperforms current decoding models on several evaluation metrics.
Submission history
From: Congchi Yin [
]
Sun, 19 May 2024 16:06:02 UTC (596 KB)
[v2]
Mon, 13 Apr 2026 07:13:10 UTC (9,448 KB)